US11456929B2 - Control plane entity and management plane entity for exchaning network slice instance data for analytics - Google Patents
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L47/00—Traffic control in data switching networks
- H04L47/10—Flow control; Congestion control
- H04L47/18—End to end
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L41/00—Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
- H04L41/12—Discovery or management of network topologies
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L41/00—Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
- H04L41/14—Network analysis or design
- H04L41/142—Network analysis or design using statistical or mathematical methods
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L41/00—Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
- H04L41/50—Network service management, e.g. ensuring proper service fulfilment according to agreements
- H04L41/5003—Managing SLA; Interaction between SLA and QoS
- H04L41/5009—Determining service level performance parameters or violations of service level contracts, e.g. violations of agreed response time or mean time between failures [MTBF]
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04W—WIRELESS COMMUNICATION NETWORKS
- H04W24/00—Supervisory, monitoring or testing arrangements
- H04W24/08—Testing, supervising or monitoring using real traffic
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
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- H04L41/00—Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
- H04L41/34—Signalling channels for network management communication
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- H04W16/00—Network planning, e.g. coverage or traffic planning tools; Network deployment, e.g. resource partitioning or cells structures
- H04W16/18—Network planning tools
Definitions
- the present disclosure relates generally to End-to-End (E2E) performance management and E2E Quality of Service (QoS) monitoring in a 5G network, particularly in the presence of one or more Network Slices (NSs) and/or one or more Network Sub Slices (NSSs).
- E2E End-to-End
- QoS Quality of Service
- NSs Network Slices
- NSSs Network Sub Slices
- the present disclosure relates to the exchanging, i.e. collecting and providing, of NS Instance (NSI) data, particularly NSI data for analytics, between the Control Plane (CP) and the Management Plane (MP).
- NSI NS Instance
- CP Control Plane
- MP Management Plane
- the present disclosure presents, on the one hand, a control plane entity for obtaining NSI data for analytics from a management plane entity, and presents, on the other hand, a management plane entity to provide NSI data, particularly NSI data for analytics, to a control plane entity. Further, the present disclosure presents corresponding collecting and providing methods.
- 5G networks will support network slicing, wherein some NSs like for Ultra-Reliable Low Latency Communications (URLLC) will have very strict E2E performance requirements. Accordingly, E2E QoS should be closely monitored. However, it is not yet decided for 5G scenarios, which kinds of Key Performance Indicators (KPIs) and measurements could be provided, for instance, from an Access Network (AN) and Core Network (CN), in order to allow such an E2E QoS monitoring for guaranteeing strict E2E performance requirements.
- KPIs Key Performance Indicators
- AN Access Network
- CN Core Network
- V2X Vehicle-to-Anything
- EPC packet core
- E2E performance metrics are measured at end points, i.e. User Equipment (UE) or Data Network (DN)/gateways. However, it is not defined, which measurements are necessary to check the defined QoS profile. Also, no system is defined to measure the entities of the system that are related to the E2E session.
- UE User Equipment
- DN Data Network
- KPIs are collected and are used for Root Cause Analysis (RCA) of KPI degradation.
- RCA Root Cause Analysis
- KQIs Key Quality Indicators
- KPIs Key Quality Indicators
- WO 205139732 A1 a system is defined for configuration of what needs to be collected and where (i.e., probes are defined). Data is then collected based on these defined probes, and the probes can be moved. However, no focus is put on measuring QoS metrics of CN and AN so as to determine the measurements related to E2E latency in the mobile network.
- the present disclosure aims to improve the existing 5G scenarios and approaches.
- the present disclosure has the objective to enable information to be collected and analyzed, in order to monitor the E2E QoS of a mobile network, particularly in the presence of NSIs and/or NSSIs.
- NSs with high E2E performance requirements should thus be better enabled.
- One aim of the disclosure is to provide finer grain information, e.g. about how much a given UP segment of a NS contributes to the E2E performance.
- the present disclosure also intends to define measurements and KPIs that allow improved E2E QoS monitoring for meeting the strict E2E performance requirements.
- the present disclosure proposes a control plane entity for collecting NSI data for analytics and a management plane entity for providing NSI data.
- One main idea of the disclosure is thereby to enable different options for data collection methods that can be performed between the control plane entity and the management plane entity.
- Another main idea of the disclosure is the types of performance measurements and KPIs designed for different levels of information collection (NS level, NSS level, User Plane Network Function (UPF) level, Network Function (NF) level, AN level, Transport Network (TN), and/or Virtualization level).
- One embodiment of the present disclosure provides a control plane entity for obtaining NSI data for analytics from a management plane entity, the control plane entity being configured to request NSI topology information from the management plane entity, and obtain at least one first set of KPIs and/or at least one set of measurements, generate the data for analytics based on the requested NSI topology information and the obtained first set of KPIs and/or set of measurements.
- control plane entity Based on the requested topology information and the obtained (i.e. received and/or calculated) KPIs and/or measurements, the control plane entity is able to generate the data for analytics that allows improved E2E QoS monitoring for achieving higher E2E performance in the presence of NSs and/or NSSIs.
- control plane entity is configured to receive the at least one first set of KPIs and/or set of measurements from the management plane entity.
- This implementation form presents an option for the data collection, in which the control plane entity does not have to calculate any KPIs, but is provided with all information necessary to obtain the data for analytics.
- the received at least one first set of KPIs includes: a set of KPIs per individual entity of the NSI, and a set of KPIs per path of at least one Network Sub Slice Instance, NSSI.
- KPIs provide a finer information of the NSI and/or NSSI, and thus enable a better E2E QoS monitoring.
- control plane entity is further configured to calculate at least one second set of KPIs based on the NSI topology information and the received first set of KPIs and/or the received set of measurements.
- control plane entity is in this implementation able to calculate at least some necessary KPIs, which allow it to improve its E2E QoS monitoring.
- the obtained NSI topology information thereby supports the control plane entity in calculating finer grain KPI information for improved monitoring.
- the calculated at least one second set of KPIs includes: a set of KPIs per path of a NSI, a set of KPIs for latency percentile impact per NSI entity per path of NSI, and a set of KPIs for latency percentile impact per path of NSI.
- KPIs provide an even finer information about the NSI and/or NSSI, and thus an even better E2E QoS monitoring. These KPIs may particularly ensure QoS monitoring for URLLC.
- control plane entity is further configured to request information about a UPF and/or AN from the management plane entity.
- control plane entity is further configured to receive a first set of measurements related to links connecting entities of the NSI from an AN to a termination point towards a DN from the management plane entity.
- the measurements concerning the links connecting the entities of the NSI allows the control plane entity to better monitor the E2E QoS. In particular, it can determine how each of the links influences the E2E performance.
- control plane entity is further configured to collect a second set of measurements related to a UPF directly from the UPF, and/or collect a third set of measurements related to an AN directly from the AN.
- Enabling the control plane entity to directly collect measurements allows the control plane entity to more quickly obtain needed measurements, in order to calculate KPIs and thus monitor the E2E QoS performance.
- control plane entity is further configured to calculate a plurality of sets of KPIs based on the NSI topology information and the received first set of measurements and/or the directly collected second and/or third sets of measurements.
- the plurality of sets of KPIs include: a set of KPIs per individual entity of a NSI, a set of KPIs per path of a NSSI, a set of KPIs per path of a NSI, a set of KPIs for latency percentile impact per NSI entity per path of NSI, and a set of KPIs for latency percentile impact per path of NSI.
- KPIs provide the control plane entity with very detailed information to implement E2E QoS monitoring reliably for high-performance requirements.
- control plane entity comprises a Network Data Analytics Function, NWDAF, wherein the NWDAF is configured to consume services from a NS Management Function of the management plane entity via a first interface, and the NWDAF is configured to consume services from a NSS Management Function of the management plane entity via a second interface.
- NWDAF Network Data Analytics Function
- One embodiment of the present disclosure provides a management plane entity for providing NSI data to a control plane entity, the management plane entity being configured to collect or request, particularly from a Virtualization and/or TN Management entities, a first set of measurements related to links connecting entities of a NSI from an AN to a termination point towards a DN as well as information about virtualized NFs of a NSI, and/or collect a second set of measurements related to a UPF from the UPF and/or collect a third set of measurements related to an AN from the AN, and expose the first, second and/or third set of measurements to the control plane entity.
- the control plane entity Because the management plane entity exposes the various kinds of measurements and/or KPIs to the control plane entity, the control plane entity is able to implement an improved E2E QoS monitoring, which enables higher E2E performance, particularly in the presence of NSIs and/or NSSIs.
- the management plane entity is further configured to calculate a plurality of sets of KPIs based on at least one collected set of measurements, particularly calculate at least one first set of KPIs in a NSS Management Function of the management plane entity, and calculate at least one second set of KPIs in NS Management Function of the management plane entity.
- the management plane entity may already calculate at least some KPIs, which it then provides to the control plane entity for the generation of the data for analytics.
- the management plane entity is further configured to expose all sets of measurements and/or all sets of KPIs to the control plane entity, and/or expose one or more sets of measurements and/or one or more sets of KPIs to the control plane entity, particularly by the NS Management Function via a first interface to the control plane entity and/or by the NSS Management Function via a second interface to the control plane entity.
- control plane entity is made aware of relevant measurements and/or KPIs, which allow it to generate the data for analytics for an improved E2E QoS monitoring.
- the plurality of sets of KPIs include: a set of KPIs per individual entity of a NSI, a set of KPIs per path of a NSSI, a set of KPIs per path of a NSI, a set of KPIs for latency percentile impact per NSI entity per path of NSI, and/or a set of KPIs for latency percentile impact per path of NSI.
- KPIs provide the control plane entity with fine grain information to monitor the E2E performance of a NSI and/or NSSI.
- One embodiment of the present disclosure provides a method for obtaining Network Slice Instance, NSI, data for analytics from a management plane entity, the method comprising requesting NSI topology information from the management plane entity, and obtaining at least one first set first set of Key Performance Indicators, KPIs, and/or at least one set of measurements, and generating the data for analytics based on the requested NSI topology information and the obtained first set of KPIs and/or set of measurements.
- NSI Network Slice Instance
- KPIs Key Performance Indicators
- the method can be developed further by implementation forms corresponding to the implementation forms of the control plane entity of the first aspect. Accordingly, the method achieves all advantages and effects of the control plane entity of the first aspect and its implementation forms, respectively.
- One embodiment of the present disclosure provides a method for providing Network Slice Instance, NSI, data to a control plane entity, the method comprising collecting or requesting, particularly from a Virtualization and/or Transport Network Management entities, a first set of measurements related to links connecting entities of a NSI from an AN, to a termination point towards a DN, as well as information about virtualized NFs of a NSI, and/or collecting a second set of measurements related to UPF from the UPF and/or collecting a third set of measurements related to an AN from the AN, and exposing the first, second and/or third set of measurements to the control plane entity.
- the method can be developed further by implementation forms corresponding to the implementation forms of the management plane entity of the second aspect. Accordingly, the method of the fourth aspect achieves all advantages and effects of the management plane entity of the second aspect and its implementation forms, respectively.
- FIG. 1 shows a control plane entity according to an embodiment of the present disclosure.
- FIG. 2 shows a management plane entity according to an embodiment of the present disclosure.
- FIG. 3 shows a first option for data collection performed by a control plane entity and a management plane entity according to embodiments of the present disclosure.
- FIG. 4 shows a second option for data collection performed by a control plane entity and a management plane entity according to embodiments of the present disclosure.
- FIG. 5 shows a third option for data collection performed by a control plane entity and a management plane entity according to embodiments of the present disclosure.
- FIG. 6 shows in (a) an illustration of entities belonging to an NSI, examples of an NSSI, and examples of possible paths within the NSI, and shows in (b) a path of a NSI.
- FIG. 7 shows a control plane entity and a management plane entity according to embodiments of the present disclosure for a 5GS Architecture.
- FIG. 8 shows measurement points in an Access Network.
- FIG. 9 shows in (a) measurement points for PDU Sessions and in (b) measurement points for unstructured non-3GPP Access.
- FIG. 10 shows a NSI data collecting method according to an embodiment of the present disclosure.
- FIG. 11 shows a NSI data providing method according to an embodiment of the present disclosure.
- FIG. 1 shows a control plane entity 100 according to an embodiment of the present disclosure.
- the control plane entity 100 is in particular suited to obtain NSI data for analytics 105 from a management plane entity 110 .
- the control plane entity 100 is situated in a control plane, and the management plane entity 110 is situated in a management plane.
- the control plane entity 100 may be a NWDAF, and may be implemented by means of one or more processors and/or by software running on a computing device.
- the management plane entity 110 may include NS and NSS management functions, respectively, and may be implemented by means of one or more processors and/or by software running on a computing device.
- the obtained KPIs 103 may include KPIs 103 per individual entity of a NSI, per path of a NSSI, per path of a NSI, for latency percentile impact per NSI entity per path of NSI, and/or for latency percentile impact per path of NSI.
- the obtained measurements 104 may include measurements 104 related to links connecting entities of an NSI from an AN to a termination point towards a DN, measurements related to a UPF and/or measurements related to an AN. More details about the KPIs 103 and measurements 104 will be given below.
- the control plane entity 100 is further configured to generate the data for analytics 105 based on the requested NSI topology information 102 and the obtained first set of KPIs 103 and/or set of measurements 104 .
- FIG. 2 shows a management plane entity 110 according to an embodiment of the present disclosure.
- the management plane entity 110 is in particular suitable for providing NSI data to a control plane entity 100 .
- the management plane entity 110 of FIG. 2 may be the management plane entity 110 already shown in FIG. 1 , and likewise the control plane entity 100 shown in FIG. 2 may be the control plane entity 100 already shown in FIG. 1 .
- the management plane entity 110 is configured to collect or request, particularly from Virtualization and/or TN Management entities 200 , a first set of measurements 104 related to links connecting entities of a NSI from an AN 202 to a termination point towards a DN 600 (see FIG. 6 ) as well as information about virtualized NFs of a NSI, and/or to collect a second set of measurements 104 related to a UPF 201 from the UPF 201 and/or to collect a third set of measurements 104 related to an AN 202 from the AN 202 .
- the measurements 104 may be as described above with respect to the control plane entity 100 of FIG. 1 .
- the management plane entity 110 is further configured to expose the first, second and/or third set of measurements 104 to the control plane entity 100 .
- the three options for data collection are explained below with respect to FIG. 3 , FIG. 4 and FIG. 5 , respectively, as well as the types of performance measurements 104 and KPIs 103 designed for the different levels of information collection (i.e., NS level, NSS level, UPFs/AN/TN/Virtualization level).
- the different sets of measurements 104 (M1-M3) and the different sets of KPIs 103 (K1-K5) will be explained in more detail after the three options for the data collection are generally described. Also the interfaces between the involved entities will then be described in more detail.
- FIG. 4 shows a second option for the data collection.
- the second option of FIG. 4 includes a direct collection of NSI and NSSI information and an indirect collection of NF/AN/TN/Virtualized information.
- FIG. 4 illustrates the entities and interfaces associated with the second option, and below are described preferred operations associated with this second option.
- FIG. 5 shows a third option for the data collection.
- the third option of FIG. 5 includes a direct collection of NSI, NSSI, and NF AN/TN/Virtualized information.
- FIG. 5 illustrates the entities and interfaces associated with the third option, and below are described preferred operations associated with this third option.
- NA_NSI first interface 300
- NA_NSSI second interface 400
- NA_NF third interface 500
- NA_ANem fourth interface 501
- the first interface 300 is between the control plane entity 100 and the NS Management Function 110 a of the management plane entity 110 .
- a NSI allows consumers (such as a NWDAF 700 (see FIG. 7 ), which is the control plane entity 100 ) to configure packet type, percentile, and periodicity of the measurements 104 in the sets M1, M2, M3 for the first and second data collection options.
- NWDAF 700 NWDAF 700
- the configuration is necessary only for the measurement 104 of set M3.
- the first interface 300 will expose different information towards the control plane entity 100 . For instance, NSSI associated with NSI and/or KPIs 103 and measurements 104 and/or NSI topology information 102 .
- the second interface 400 is between the control plane entity 100 and the NSS
- Management Function 110 b of the management plane entity 110 Via this second interface 400 , measurements 104 from sets M1, M2, and M3 as well as KPIs 103 related to AN 202 and UPFs 201 from sets K1 and K2 of KPIs 103 are exposed.
- the third interface 500 is between the control plane entity 100 and one or more UPFs 201 . Via this third interface 500 measurements related to the set M2 are exposed to the control plane entity 100 .
- the fourth interface 501 is between the control plane entity 100 and the AN 202 . Via this fourth interface 501 , measurements 104 related to set M1 are exposed to the control plane entity 100 and/or the NSSI Management Function 110 b and/or UPFs 201 and AN 201 (AN EM) that are used according with the option for data collection method.
- Sets of measurements 104 may generally be related to AN 202 , UPFs 202 , and data links of a NSI.
- the type of measurements 104 are, for instance: processing/link latency, packet delay variation (PDV), throughput, and/or error rate.
- PDV packet delay variation
- the following statistical values may be collected: average, maximum, minimum, variance, and/or percentile (which is a parameter configurable).
- These measurements 104 can be collected in the granularity of type of packet and/or QoS qualifiers of the data flows in the NSI. All measurements are collected for both UL (Uplink) and DL (Downlink) separately.
- the set M1 relates to measurements 104 from the AN 202 .
- the set M2 relates to measurements 104 from one or more UPFs 201 .
- the set M3 relates to measurements 104 from links connecting entities of a NSI from AN 202 until the termination point towards the DN.
- Sets of KPIs 103 may be related to individual performance of entities composing the NSI (such as UPFs 201 , AN 202 , and each data link of the NSI), and aggregated information at the NSSI level, and aggregated information at the level of NSI. All KPIs 103 may be calculated for both UL and DL separately.
- the sets of KPIs K1, K2, and K3 are calculated for all types of measurements 104 considered in this disclosure.
- the sets of KPIs K4 and K5 are specifically related to latency.
- the set K1 relates to KPIs 103 per individual entity of a NSI.
- KPI 103 associated with average latency of a NSSI within a NSI path is the sum of the contributors of an NSSI path. For instance, with respect to FIG. 6( a ) an average latency for of NSI Path Z related to NNSI #2 is calculated by the sum of average UPF #b and UPF #c processing latency, plus average latency of 14 and 16.
- KPIs 103 associated with throughput or Packet Delay Variation (PDV) or error rate of a NSSI within a NSI path can be configured to be based either on the highest or lowest value observed in one entity of the NSI path.
- the percentile KPI 103 for throughput of NSI Path Z on NSSI #2 can either take into account the lowest or the highest percentile value of UPF #b or UPF #c or 14 or 16.
- the set K3 relates to KPIs 103 per path of a NSI. These KPIs 103 are for identifying E2E performance of a given type of measurement per path of a NSI.
- FIG. 6( b ) shows an example of a NSI path related to the E2E KPIs 103 defined in this set.
- average latency KPI 103 per NSI latency may be calculated as the sum of the average latency values per contributing entity in the NSI path.
- Throughput or PDV or error rate per NSI path can be configured to be based either on the highest or lowest value observed for such type of measurement 104 in one entity of the NSI path.
- the set K4 relates to KPIs 103 for latency percentile impact per NSI entity per path of a NSI.
- the goal of the KPIs 103 defined in this set is to support the identification of how the latency percentile of entities in different NSSI of an NSI path are affecting the average E2E latency of a NSI path. For instance, considering the NSI Path #2 illustrated in FIG.
- ANPercentileULProcDelayImpactOnULE2EAvgLatency ANPercentileULProcDelay+ L 1AverageULDelay+PerPathUFPAverageULProcDelay+ L 4AverageULDelay+ L 5AverageULDelay
- the set K5 relates to KPIs 103 for latency percentile impact per path of a NSI.
- Services in the NS Management Function 110 a , the NSS Management Function 110 a , the UPFs 201 , the AN 202 , and/or TN EM/Virtualized EM, are used by the proposed interfaces in this disclosure for data collection.
- these services can also be consumed by any other entity allowed to retrieve the measurements 104 and KPIs 103 these services expose (e.g., some other function within the management plane 310 ).
- FIG. 7 shows a control plane entity 100 and a management plane entity 110 according to embodiments of the present disclosure in a specific implementation.
- the implementation is based on the architecture and functionalities of the 3GPP Architecture for 5G Core Networks defined in TS23.501 and the Management solutions for 5GS defined in 3GPP TS28.x series.
- the key elements of the 5GS core network architecture, the 5G management functions, as well as the indication of the extensions of this embodiment to such functions and architecture are depicted in FIG. 7 . In FIG. 7 all extensions and interfaces are indicated regardless of the option for the data collection that is to be used.
- the 5GS is shown as in a case supporting all three options of the data collection.
- the first and second interfaces 300 and 400 are defined, respectively, between the NWDAF 700 and the NS Management Function 110 a , as well as the NWDAF 700 and the NSS Management Function 110 b of the management plane entity 110 .
- the NWDAF 700 may have indirect access to measurements 104 of the M1 set using Access Management Function (AMF) as the relay of information.
- the NWDAF 700 may have direct access to AN 202 measurements 104 .
- AMF Access Management Function
- FIG. 8 shows measurement points in an AN 202 .
- the set M1 of measurements 104 of the AN 202 for UL will take in consideration packets being treated by Physical (PHY) level and SDAP/PDCP, and for DL vise-versa.
- PHY Physical
- SDAP/PDCP Secure Socket Control Protocol
- M2 set measurements 104 of UPF 201 there are two different measurement points also taking into account the type of sessions established in the UPF 201 . This is shown and explained with respect to FIG. 9 , which shows in (a) measurement points for PDU Sessions and in (b) measurement points for unstructured non 3GPP Access.
- FIG. 10 shows a method 1000 according to an embodiment of the present disclosure.
- the method is in particular for obtaining NSI data for analytics 105 from management plane entity 110 .
- the method 1000 may be performed by a control plane entity 100 , as shown in FIG. 1 .
- the method 100 comprises operation 1001 of requesting NSI topology information 102 from the management plane entity 110 . Further, operation 1002 of obtaining at least one first set first set of KPIs 103 and/or at least one set of measurements 104 . Further, operation 1003 of generating the data for analytics 105 based on the requested NSI topology information 102 and the obtained first set of KPIs 103 and/or set of measurements 104 .
- FIG. 11 shows a method 1100 according to an embodiment of the present disclosure.
- the method is in particular for providing NSI data to a control plane entity 100 .
- the method 1100 may be performed by a management plane entity 110 , as shown in FIG. 2 .
- the method 1100 may comprise operation 1101 a of collecting or requesting, particularly from a Virtualization and/or TN Management entities 200 , a first set of measurements 104 related to links connecting entities of a NSI from an AN 202 to a termination point towards a DN 600 as well as information about virtualized NFs of a NSI.
- the method 1100 may comprise operation 1101 b of collecting a second set of measurements 104 related to a UPF 201 from the UPF 201 .
- the method 1100 may comprise operation 1101 c of collecting a third set of measurements 104 related to an AN 202 from the AN 202 .
- the method 1100 further comprises operation 1102 of exposing the first, second and/or third set of measurements 104 to the control plane entity 100 .
- control plane entity 100 and the management plane entity 110 respectively are that:
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Abstract
Description
-
- Operation 0: The control plane entity 100 (here named “Analytics Function”) registers to receive the
topology information 102, and the KPIs 103 and/ormeasurements 104 from aNS Management Function 110 a of themanagement plane entity 110 situated in themanagement plane 310. - Operation 1: A
NSS Management Function 110 b of themanagement plane entity 100 directly collects measurement sets M1 and M2 related to UPFs 201 (NFs) and AN 202. - Operation 2: The
NSS Management Function 110 b either directly collects the measurements of a set M3 from the Virtualization and TN Management functions 200 or it requests such information from thosefunctions 200. - Operation 3: The
NSS Management Function 110 b calculates sets K1 and K2 of KPIs 103. - Operation 4: The
NSS Management Function 110 b exposes measurement sets M1 and M2, and UPFs 201 and AN 202 from sets K1 and K2 of KPIs 103 towards theNS Management Function 110 a. - Operation 5: The
NS Management Function 110 a calculates remaining sets K3-K5 of KPIs 103. - Operation 6: The
NS Management Function 110 a exposes all sets ofmeasurements 104 and sets of KPIs 103 to theAnalytics Function 100.
- Operation 0: The control plane entity 100 (here named “Analytics Function”) registers to receive the
-
- Operation 0: The Analytics Function (control plane entity 100) requests via a
first interface 300 between themanagement plane entity 110 and the control plane entity 100 (referred to as interface NA_NSI)topology information 102, e.g. about NSSIs associated with a NSI. - Operation 1: The
Analytics Function 100 registers to receive the KPIs 103 and/or themeasurements 104 from theNSS Management Function 110 b of themanagement plane entity 110 associated with requested NSI. - Operation 2: The
NSS Management Function 110 b directly collects the measurement sets M1 and M2 related toUPFs 201 and AN 202. - Operation 3: The
NSS Management Function 110 b either directly collects the measurements of set M3 from the Virtualization and TN Management functions 200 or it requests such information from thosefunctions 200. - Operation 4: The
NSS Management Function 110 b calculates the sets K1 and K2 of KPIs 103. - Operation 5: The
NSS Management Function 110 b exposes via asecond interface 400 between themanagement plane entity 110 and the control plane entity 100 (referred to as interface NA_NSSI)measurements 104 from M1, M2, and M3, as well as KPIs 103 related to K1 and K2 to theAnalytics Function 100. - Operation 6: The
Analytics Function 100 calculates the remaining sets K3-K5 of KPIs 103 with the information fromNS Management Function 110 a andNSS Management Function 110 b.
- Operation 0: The Analytics Function (control plane entity 100) requests via a
-
- Operation 0: The Analytics Function (control plane entity 100) requests via the first interface 300 (NA_NSI) information about NSSIs and the
topology information 102, e.g. associated with paths within a NSI from the NS Management function 110 a. - Operation 1: The
Analytics Function 100 requests via the second interface 400 (NA_NSSI) information aboutUPFs 201 and AN 202 associated with NSSIs. - Operation 2: The
Analytics Function 100 registers via the second interface 400 (NA_NSSI) to receive themeasurements 104 from set M3 from theNSS Management Function 110 b. - Operation 3: The
Analytics Function 100 directly collects from a UPF 201 (via athird interface 500 between thecontrol plane entity 100 and theUPF 201, referred to as interface NA_NF), and directly collects from an AN 202 (via afourth interface 501 between thecontrol plane entity 100 and theAN 202, referred to as interface NA_ANem)measurements 104 sets M1 and M2 related to theUPF 201 and AN 202. - Operation 4: The
NSS Management Function 110 b either directly collects themeasurements 104 of set M3 from the Virtualization and TN Management functions 200 or it requests such information from thosefunctions 200. - Operation 5: The
NSS Management Function 110 b exposes to theAnalytics Function 100 via the second interface 400 (NA_NSSI)measurements 104 from set M3. - Operation 5: The
Analytics Function 100 calculates all sets K1-K5 of KPIs 103 with the information from theNS Management Function 110 a andNSS Management Function 110 b.
- Operation 0: The Analytics Function (control plane entity 100) requests via the first interface 300 (NA_NSI) information about NSSIs and the
[Type-of-measurement]PercentileExceedingAvg=(1−([type-of-measurement])Avg/[type-of-measurement]Percentile))*100
ANPercentileULProcDelayImpactOnULE2EAvgLatency: ANPercentileULProcDelay+L1AverageULDelay+PerPathUFPAverageULProcDelay+L4AverageULDelay+L5AverageULDelay
ANPercentileExceedingE2EAvgLatency=(1−PerNSIPathE2EAvgLatency/ANProcessingLatencyPercentile))*100
-
- An extension of the NWDAF 700 with the functionalities of the control plane entity 100 (Analytics Function) as described above according to the operations of the different options for the data collection.
- An extension of the
NS Management Function 110 a andNSS Management Function 110 b of the 3GPP 5G Management Architecture (management plane entity 110) to perform the operations defined in the different options of the data collection described above. - According with 3GPP, all issues related to TN and
Virtualization 200 will be handled by ETSI MANO Framework. Therefore, the KPIs 103 of MANO are extended, in order to provide the set M3 ofmeasurements 104. - The interface between the
NSS Management Function 110 b and MANO is also updated to enable the parametrization of how the M3 set ofmeasurements 104 is to be collected (for instance, which percentile should be used, i.e., 90%-percentile or 99%-percentile), and to allow for the actual collection of the M3 set ofmeasurements 104.
-
- Two alternatives are possible for the third interface 500 (NA_NF):
- a) NWDAF 700 may have indirect access to
UPF 201measurements 104. In this case, the Service Based Architecture (SBA) interface exposed by a Session Management Function (SMF) may be extended to support the functionalities defined forNA_NF 500 and NWDAF 700 to access the SMF services to collect the M2 set ofmeasurements 104. This also means that the SMF is the entity responsible for collecting themeasurements 104 directly from theUPFs 201 via extensions of N4 interface to support the collection of themeasurements 104 in set M2. - b) NWDAF 700 may have direct access to the
UPF 201measurements 104. In this case, theNA_NF 500 is a new interface between NWDAF 700 andUPFs 201. It is proposed to define a SBA service inUPF 201 that exposes themeasurements 104 in M2 set. In this case, the NWDAF 700 registers toUPF 201 services in order to be notified about themeasurements 104.
- a) NWDAF 700 may have indirect access to
- Two alternatives are possible for the third interface 500 (NA_NF):
-
- For Protocol Data Unit (PDU) Sessions the protocol stack and measurement points are illustrated
FIG. 9(a) . In addition, there can exist different deployments of UPFs 201:- a) In the first case, there is only one N9 interface in a NSI path, i.e., there is only one
UPF 201 between AN 200 and theDN 600. In this case, the measurements involve the network L1 towards N3 and N6 ofsuch UPF 201. - b) In the second case, there exist a chain of
UPFs 201 between theAN 202 andDN 600. In this case, there are three measurement points. Firstly, for theUPF 201 connected to AN 202 the measurement points are at L1 for N3 and N9. Secondly, for theUPFs 201 connected only by N9 interface, themeasurements 104 will be done in L1 of N9s linking to thedifferent UPFs 201 of the NSI path. Thirdly, for theUPFs 201 connected to N6 and another UPF 201 (for a given NSI path) the measurements points are L1 from N9 and N6.
- a) In the first case, there is only one N9 interface in a NSI path, i.e., there is only one
- For UP Protocol Stack for unstructured non 3GPP Access, measurement points are illustrated in
FIG. 9(b) . In this case, themeasurements 104 are performed at the entry point of the network interfaces at N3 stack, N9 stack. The same issue about chainingUPFs 201 applies for themeasurement 104 of unstructured non 3GPP access.
- For Protocol Data Unit (PDU) Sessions the protocol stack and measurement points are illustrated
-
- The disclosure enables information beyond AN 202 and
NF 201 status to be collected and analyzed, in order to determine E2E QoS of mobile networks. - It enables 5GS to have a more fine grain information about how much each User Plane (UP) segment of a Network Slice (NS) contributes to the E2E performance (such as latency of each segment of the network contributing for the Packet Delay Budget (PDB)).
- The disclosure enables 5GS to use the defined
measurements 104 and KPIs 103 as sources of information for developing solutions for dynamically adapting the 5GS, in order to assure the fulfilment of E2E QoS requirements. - The disclosure enables E2E QoS assurance for Ultra-Reliable Low Latency Communications (URLLC):
- Assurance that E2E latency is being fulfilled needs to apply not only for users in the performance range of the average, because in addition to E2E latency URLLC also requires reliability in the order of 99.99xxx %. This means that it is not enough to identify the E2E latency in average, but it is also necessary to observe the E2E latency for users in the 99-percentile. Only if average and 99-percentile are fulfilled, then it is possible to indicate how the E2E latency for URLLC is being provided.
- Measurements for detection of situations affecting the E2E latency need to consider the breakdown of PDB into AN 202, CN UP link transmission and
UPF 201 processing time. - Using precise measurement operators can detect exactly where a problem in the E2E latency of URLLC is happening and can adjust the network accordingly. For instance, if the average E2E latency is not within PDB, this means that operators need to reevaluate the provisioning of the NSI. If only the percentile E2E latency is not within PDB, this means that operators need to further investigate where the problem for users in this range is happening.
- The disclosure enables information beyond AN 202 and
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